YOLOv12 to Its Genesis: A Decadal and Comprehensive Review of The You Only Look Once (YOLO) Series

Created by MG96

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Authors

Ranjan Sapkota Rizwan Qureshi Marco Flores Calero Chetan Badjugar Upesh Nepal Alwin Poulose Peter Zeno Uday Bhanu Prakash Vaddevolu Sheheryar Khan Maged Shoman Hong Yan Manoj Karkee
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Abstract

This review systematically examines the progression of the You Only Look Once (YOLO) object detection algorithms from YOLOv1 to the recently unveiled YOLOv12. Employing a reverse chronological analysis, this study examines the advancements introduced by YOLO algorithms, beginning with YOLOv12 and progressing through YOLO11 (or YOLOv11), YOLOv10, YOLOv9, YOLOv8, and subsequent versions to explore each version's contributions to enhancing speed, detection accuracy, and computational efficiency in real-time object detection. Additionally, this study reviews the alternative versions derived from YOLO architectural advancements of YOLO-NAS, YOLO-X, YOLO-R, DAMO-YOLO, and Gold-YOLO. By detailing the incremental technological advancements in subsequent YOLO versions, this review chronicles the evolution of YOLO, and discusses the challenges and limitations in each of the earlier versions. The evolution signifies a path towards integrating YOLO with multimodal, context-aware, and Artificial General Intelligence (AGI) systems for the next YOLO decade, promising significant implications for future developments in AI-driven applications. (Key terms: YOLOv12, YOLOv12 architecture, YOLOv11, YOLO11, YOLO Review, YOLOv14, YOLOv15, YOLO architecture, YOLOv12 architecture)

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